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脊柱术后感染治疗评分(PITSS):构建和验证一个预测模型,以确定脊柱手术部位感染是否需要单次或多次灌洗清创。

Postoperative infection treatment score for the spine (PITSS): construction and validation of a predictive model to define need for single versus multiple irrigation and debridement for spinal surgical site infection.

机构信息

Department of Orthopaedics, University of Massachusetts Medical Center, Worcester, MA 01605, USA.

出版信息

Spine J. 2012 Mar;12(3):218-30. doi: 10.1016/j.spinee.2012.02.004. Epub 2012 Mar 3.

Abstract

BACKGROUND CONTEXT

There is very little evidence to guide treatment of patients with spinal surgical site infection (SSI) who require irrigation and debridement (I&D) in deciding need for single or multiple I&Ds or more complex wound management such as vacuum-assisted closure dressing or soft-tissue flaps.

PURPOSE

The purpose of this study was to build a predictive model that stratifies patients with spinal SSI, allowing us to determine which patients will need single versus multiple I&D. The model will be validated and will serve as evidence to support a scoring system to guide treatment.

STUDY DESIGN

A consecutive series of 128 patients from a tertiary spine center (collected from 1999 to 2005) who required I&D for spinal SSI were studied based on data from a prospectively collected outcomes database.

METHODS

More than 30 variables were identified by extensive literature review as possible risk factors for SSI and tested as possible predictors of risk for multiple I&D. Logistic regression was conducted to assess each variable's predictability by a "bootstrap" statistical method. A prediction model was built in which single or multiple I&D was treated as the "response" and risk factors as "predictors." Next, a second series of 34 different patients meeting the same criteria as the first population were studied. External validation of the predictive model was performed by applying the model to the second data set, and predicted probabilities were generated for each patient. Receiver operating characteristic curves were constructed, and the area under the curve (AUC) was calculated.

RESULTS

Twenty-four of one hundred twenty-eight patients with spinal SSI required multiple I&D. Six predictors: anatomical location, medical comorbidities, specific microbiology of the SSI, the presence of distant site infection (ie, urinary tract infection or bacteremia), the presence of instrumentation, and the bone graft type proved to be the most reliable predictors of need for multiple I&D. Internal validation of the predictive model yielded an AUC of 0.84. External validation analysis yielded AUC of 0.70 and 95% confidence interval of 0.51 to 0.89. By setting a probability cutoff of .24, the negative predictive value (NPV) for multiple I&D was 0.77 and positive predictive value (PPV) was 0.57. A probability cutoff of .53 yielded a PPV of 0.85 and NPV of 0.46.

CONCLUSIONS

Patients with positive methicillin-resistant Staphylococcus aureus culture or those with distant site infection such as bacteremia were strong predictors of need for multiple I&D. Presence of instrumentation, location of surgery in the posterior lumbar spine, and use of nonautograft bone graft material predicted multiple I&D. Diabetes also proved to be the most significant medical comorbidity for multiple I&D. The validation of this predictive model revealed excellent PPV and good NPV with appropriately chosen probability cutoff points. This study forms the basis for an evidence-based classification system, the Postoperative Infection Treatment Score for the Spine that stratifies patients who require surgery for SSI, based on specific spine, patient, infection, and surgical factors to assess a low, indeterminate, and high risk for the need for multiple I&D.

摘要

背景

对于需要灌洗和清创(I&D)治疗的脊柱手术部位感染(SSI)患者,几乎没有证据可以指导治疗,无法确定是需要单次还是多次 I&D,或者更复杂的伤口管理,如负压辅助闭合敷料或软组织皮瓣。

目的

本研究的目的是建立一个预测模型,对脊柱 SSI 患者进行分层,以便我们确定哪些患者需要单次或多次 I&D。该模型将经过验证,并作为支持评分系统以指导治疗的证据。

研究设计

从一个三级脊柱中心(收集于 1999 年至 2005 年)连续收治的 128 例因脊柱 SSI 需要 I&D 的患者,根据前瞻性收集的结局数据库中的数据进行研究。

方法

通过广泛的文献回顾确定了 30 多个变量,这些变量被认为是 SSI 的可能危险因素,并作为多次 I&D 的可能预测因素进行了测试。采用“自举”统计方法进行逻辑回归,以评估每个变量的预测能力。构建预测模型,其中单次或多次 I&D 作为“反应”,危险因素作为“预测因子”。接下来,对满足第一组人群相同标准的 34 例不同患者进行了第二系列研究。通过将模型应用于第二组数据,对预测模型进行外部验证,并为每位患者生成预测概率。构建受试者工作特征曲线,并计算曲线下面积(AUC)。

结果

128 例脊柱 SSI 患者中有 24 例需要多次 I&D。6 个预测因素:解剖部位、合并症、SSI 的特定微生物学、远处部位感染(即尿路感染或菌血症)、器械植入物和移植物类型,被证明是多次 I&D 最可靠的预测因素。预测模型的内部验证得到的 AUC 为 0.84。外部验证分析得到的 AUC 为 0.70,95%置信区间为 0.51 至 0.89。设定概率截断值为 0.24,多次 I&D 的阴性预测值(NPV)为 0.77,阳性预测值(PPV)为 0.57。概率截断值为 0.53 时,PPV 为 0.85,NPV 为 0.46。

结论

耐甲氧西林金黄色葡萄球菌(MRSA)阳性培养或伴有菌血症等远处部位感染的患者,是需要多次 I&D 的强烈预测因素。器械植入物、后路腰椎手术部位和非自体移植物材料的使用均预测需要多次 I&D。糖尿病也是导致多次 I&D 的最重要合并症。该预测模型的验证结果显示,选择适当的概率截断值,具有出色的 PPV 和良好的 NPV。这项研究为基于特定脊柱、患者、感染和手术因素的脊柱 SSI 手术治疗的术后感染治疗评分(Postoperative Infection Treatment Score for the Spine)提供了依据,该评分系统可以对需要多次 I&D 的患者进行分层,评估其是否需要多次 I&D 的风险较低、不确定或较高。

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